Image from Google Jackets
Image from OpenLibrary

A spatial fuzzy compromise programming for management of natural disasters / Slobodan S. Simonvic.

By: Material type: TextTextSeries: ICLR Research Paper Series ; ; 24Publication details: [Toronto, Canada] : Institute for Catastrophic Loss Reduction, 2002.Description: 26 p. : ill. ; 30 cmDDC classification:
  • 363.3493/7/097127 22
Partial contents:
Spatial fuzzy compromise programming technique -- Illustrative results of the SFCP application -- Utility of the research results to insurance industry -- Conclusions.
Review: "In this report a new technique named Spatial Fuzzy Compromise Programming (SFCP) has been developed to enhance our ability to address the issues related to uncertainties in spatial environment. A general fuzzy compromise programming technique, when made spatially distributed, proved to be a powerful and flexible addition to the list of techniques available for decision making where multiple criteria are used to judge multiple alternatives. All uncertain variables (subjective and objective) are modeled by way of fuzzy sets. In the present study, fuzzy measures have been introduced to spatial multi criteria decision-making in the GIS environment in order to account for uncertainties." -- p. 4.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)

Cover title.

Includes bibliography (pp. 23-26).

Spatial fuzzy compromise programming technique -- Illustrative results of the SFCP application -- Utility of the research results to insurance industry -- Conclusions.

"In this report a new technique named Spatial Fuzzy Compromise Programming (SFCP) has been developed to enhance our ability to address the issues related to uncertainties in spatial environment. A general fuzzy compromise programming technique, when made spatially distributed, proved to be a powerful and flexible addition to the list of techniques available for decision making where multiple criteria are used to judge multiple alternatives. All uncertain variables (subjective and objective) are modeled by way of fuzzy sets. In the present study, fuzzy measures have been introduced to spatial multi criteria decision-making in the GIS environment in order to account for uncertainties." -- p. 4.

There are no comments on this title.

to post a comment.

Powered by Koha